首页> 外文会议>Image Analysis and Interpretation, 2004. 6th IEEE Southwest Symposium on >Hierarchical sensor data fusion by probabilistic cue integration for robust 3D object tracking
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Hierarchical sensor data fusion by probabilistic cue integration for robust 3D object tracking

机译:通过概率提示集成进行分层传感器数据融合,以实现可靠的3D对象跟踪

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Sensor data fusion from multiple cameras is an important problem for machine vision systems operating in complex, natural environments. We tackle the problem of how information from different sensors can be fused in 3D object tracking. We embed an approach called democratic integration into a probabilistic framework and solve the fusion step by hierarchically fusing the information of different sensors and different information sources (cues) derived from each sensor. We compare different fusion architectures and different adaptation schemes. The experiments for 3D object tracking using three calibrated cameras show that adaptive hierarchical fusion improves the tracking robustness and accuracy compared to a flat fusion strategy.
机译:对于在复杂自然环境中运行的机器视觉系统而言,来自多台摄像机的传感器数据融合是一个重要的问题。我们解决了如何在3D对象跟踪中融合来自不同传感器的信息的问题。我们将一种称为民主整合的方法嵌入到概率框架中,并通过分层融合不同传感器的信息以及从每个传感器派生的不同信息源(线索)来解决融合步骤。我们比较了不同的融合架构和不同的适应方案。使用三个校准相机进行3D对象跟踪的实验表明,与平面融合策略相比,自适应分层融合提高了跟踪的鲁棒性和准确性。

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